通过物联网和机器学习检测智能家居中的水浪费情况

Chiara Brunelli, Gianmarco Pappacoda, Ivan D. Zyrianoff, L. Bononi, M. D. Felice
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引用次数: 0

摘要

促进可持续用水是社会各行各业的当务之急。家庭也不例外,因为由于低效的设备或不当的生活习惯,每天都有大量的水被浪费掉。因此,我们需要创新的解决方案,不仅能提高水的利用率,还能提高居民对这一问题的认识。本文介绍了一种利用物联网(IoT)和机器学习(ML)技术自动检测因水槽使用而造成的水资源浪费的可行解决方案。我们设计并开发了一个低成本原型,配备了一系列传感器,包括麦克风、超声波传感器和 PIR,用于监测水槽的使用情况。我们训练了一个基于门控循环单元(GRU)的深度学习模型,用于对浪费事件进行分类。为了验证我们的概念,我们通过物联网原型收集了一个小型数据集,涉及九种常见的日常用水活动。我们的初步研究结果证明了我们解决方案的可行性,检测浪费事件的平均准确率超过 90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Water Wastage Detection in Smart Homes Through IoT and Machine Learning
Promoting sustainable water usage is a critical imperative across all sectors of society. Households are no exception since a significant portion of water is wasted daily due to inefficient appliances or improper habits. Thus, there is a need for innovative solutions that not only improve water utilization but also raise residents' awareness about this issue. This paper presents a promising solution leveraging the Internet of Things (IoT) and Machine Learning (ML) techniques to detect water wastage stemming from sink usage automatically. We have designed and developed a low-cost prototype equipped with an array of sensors, including a microphone, an ultrasonic sensor, and a PIR, to monitor sink usage. A deep learning model based on Gated Recurrent Units (GRU) has been trained to classify the wastage events. To validate our concept, we have gathered a small dataset relative to nine common daily water usage activities through the IoT prototype. Our preliminary findings demonstrate the feasibility of our solution, with an average accuracy exceeding 90% in detecting wastage events.
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